ROCVNov 16, 2022

RF-Annotate: Automatic RF-Supervised Image Annotation of Common Objects in Context

arXiv:2211.08837v17 citationsh-index: 8
Originality Incremental advance
AI Analysis

This enables robots to autonomously collect labeled visual data for object detection in environments like homes and warehouses, though it is incremental as it builds on existing RFID and vision technologies.

The authors tackled the problem of automatically annotating images for robotic perception by leveraging RFID tags to label objects in RGB-D sequences, achieving pixel-wise annotation without manual intervention.

Wireless tags are increasingly used to track and identify common items of interest such as retail goods, food, medicine, clothing, books, documents, keys, equipment, and more. At the same time, there is a need for labelled visual data featuring such items for the purpose of training object detection and recognition models for robots operating in homes, warehouses, stores, libraries, pharmacies, and so on. In this paper, we ask: can we leverage the tracking and identification capabilities of such tags as a basis for a large-scale automatic image annotation system for robotic perception tasks? We present RF-Annotate, a pipeline for autonomous pixel-wise image annotation which enables robots to collect labelled visual data of objects of interest as they encounter them within their environment. Our pipeline uses unmodified commodity RFID readers and RGB-D cameras, and exploits arbitrary small-scale motions afforded by mobile robotic platforms to spatially map RFIDs to corresponding objects in the scene. Our only assumption is that the objects of interest within the environment are pre-tagged with inexpensive battery-free RFIDs costing 3-15 cents each. We demonstrate the efficacy of our pipeline on several RGB-D sequences of tabletop scenes featuring common objects in a variety of indoor environments.

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